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Evolutionary algorithms for cluster heads election in wireless sensor networks: Performance comparison

机译:无线传感器网络中簇首选举的进化算法:性能比较

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Clustering sensor nodes into groups is an efficient topology control approach for achieving long-term operation of Wireless Sensor Networks (WSNs). The performance of clustering is greatly influenced by the selection of Cluster Heads (CHs), which are in charge of creating clusters and controlling member nodes. Finding the optimal set of CHs is known to be non-deterministic polynomial (NP)-hard problem for a WSN. Evolutionary computation approaches can be applied to find fast and efficient solutions to such problems. In this paper, the problem of CHs election is formulated as a single-objective optimization problem, aiming to obtain clusters that maximize the network energy efficiency and link quality. The formulated problem has been solved using three Evolutionary approaches: Genetic Algorithms (GA), Differential Evolution (DE) and Particle Swarm Optimization (PSO). Their performance has been compared in terms of the achieved fitness value. In addition, the performance of the proposed protocol is evaluated and compared to well-known cluster-based sensor network protocols.
机译:将传感器节点分为几类是一种有效的拓扑控制方法,可实现无线传感器网络(WSN)的长期运行。群集的性能很大程度上受选择负责创建群集和控制成员节点的群集头(CH)的影响。对于WSN,找到CH的最佳集合是一个不确定的多项式(NP)难题。进化计算方法可以用于找到针对这些问题的快速有效的解决方案。在本文中,将CH的选择问题表述为一个单目标优化问题,旨在获得使网络能效和链路质量最大化的集群。使用三种进化方法解决了提出的问题:遗传算法(GA),差分进化(DE)和粒子群优化(PSO)。根据获得的适用性值对它们的性能进行了比较。另外,评估了所提出协议的性能,并将其与众所周知的基于群集的传感器网络协议进行了比较。

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